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Hands-On Data Science for Marketing

You're reading from   Hands-On Data Science for Marketing Improve your marketing strategies with machine learning using Python and R

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Product type Paperback
Published in Mar 2019
Publisher Packt
ISBN-13 9781789346343
Length 464 pages
Edition 1st Edition
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Author (1):
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Yoon Hyup Hwang Yoon Hyup Hwang
Author Profile Icon Yoon Hyup Hwang
Yoon Hyup Hwang
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Table of Contents (20) Chapters Close

Preface 1. Section 1: Introduction and Environment Setup FREE CHAPTER
2. Data Science and Marketing 3. Section 2: Descriptive Versus Explanatory Analysis
4. Key Performance Indicators and Visualizations 5. Drivers behind Marketing Engagement 6. From Engagement to Conversion 7. Section 3: Product Visibility and Marketing
8. Product Analytics 9. Recommending the Right Products 10. Section 4: Personalized Marketing
11. Exploratory Analysis for Customer Behavior 12. Predicting the Likelihood of Marketing Engagement 13. Customer Lifetime Value 14. Data-Driven Customer Segmentation 15. Retaining Customers 16. Section 5: Better Decision Making
17. A/B Testing for Better Marketing Strategy 18. What's Next? 19. Other Books You May Enjoy

Summary

In this chapter, we have learned more about customer segmentation. We worked through three simple scenarios of how customer segmentation could help different businesses to form better and more cost-effective marketing strategies. We have discussed how having a good understanding of different customer segments, how customers in different segments behave, and what they need and are interested in can help you target your audience better. We have also learned about the k-means clustering algorithm, which is one of the most frequently used clustering algorithms for customer segmentation. In order to evaluate the quality of clusters, we have shown how we can use the silhouette coefficient.

During programming exercises, we have experimented with how we can build a k-means clustering model in Python and R. In Python, we could use the KMeans module in the scikit-learn package and...

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